A hybrid bandit framework for diversified recommendation
The interactive recommender systems involve users in the recommendation procedure by receiving timely user feedback to update the recommendation policy. Therefore, they are widely used in real application scenarios. Previous interactive recommendation methods primarily focus on learning users...
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sg-ntu-dr.10356-1527192021-09-29T02:56:04Z A hybrid bandit framework for diversified recommendation Ding, Qinxu Liu, Yong Miao, Chunyan Cheng, Fei Tang, Haihong School of Computer Science and Engineering Thirty-Fifth AAAI Conference on Artificial Intelligence (AAAI-21) Alibaba-NTU Singapore Joint Research Institute Joint NTU-UBC Research Centre of Excellence in Active Living for the Elderly (LILY) Engineering::Computer science and engineering Engineering::Computer science and engineering::Information systems::Information storage and retrieval Linear Modular Dispersion Bandit Interactive Recommender Systems The interactive recommender systems involve users in the recommendation procedure by receiving timely user feedback to update the recommendation policy. Therefore, they are widely used in real application scenarios. Previous interactive recommendation methods primarily focus on learning users' personalized preferences on the relevance properties of an item set. However, the investigation of users' personalized preferences on the diversity properties of an item set is usually ignored. To overcome this problem, we propose the Linear Modular Dispersion Bandit (LMDB) framework, which is an online learning setting for optimizing a combination of modular functions and dispersion functions. Specifically, LMDB employs modular functions to model the relevance properties of each item, and dispersion functions to describe the diversity properties of an item set. Moreover, we also develop a learning algorithm, called Linear Modular Dispersion Hybrid (LMDH) to solve the LMDB problem and derive a gap-free bound on its n-step regret. Extensive experiments on real datasets are performed to demonstrate the effectiveness of the proposed LMDB framework in balancing the recommendation accuracy and diversity. AI Singapore Ministry of Health (MOH) National Research Foundation (NRF) Accepted version This research is supported, in part, by Alibaba Group through Alibaba Innovative Research (AIR) Program and Alibaba-NTU Singapore Joint Research Institute (JRI) (Alibaba-NTU-AIR2019B1), Nanyang Technological University, Singapore. This research is also supported, in part, by the National Research Foundation, Prime Minister’s Office, Singapore under its AI Singapore Programme (AISG Award No: AISG-GC-2019-003) and under its NRF Investigatorship Programme (NRFI Award No. NRF-NRFI05- 2019-0002). Any opinions, findings and conclusions or recommendations expressed in this material are those of the authors and do not reflect the views of National Research Foundation, Singapore. This research is also supported, in part, by the Singapore Ministry of Health under its National Innovation Challenge on Active and Confident Ageing (NIC Project No. MOH/NIC/COG04/2017 and MOH/NIC/HAIG03/2017). 2021-09-29T02:11:56Z 2021-09-29T02:11:56Z 2021 Conference Paper Ding, Q., Liu, Y., Miao, C., Cheng, F. & Tang, H. (2021). A hybrid bandit framework for diversified recommendation. Thirty-Fifth AAAI Conference on Artificial Intelligence (AAAI-21), 35, 4036-4044. 978-1-57735-866-4 2159-5399 https://ojs.aaai.org/index.php/AAAI/issue/archive https://hdl.handle.net/10356/152719 35 4036 4044 en Alibaba-NTU-AIR2019B1 AISG-GC-2019-003 NRF-NRFI05- 2019-0002 MOH/NIC/COG04/2017 MOH/NIC/HAIG03/2017 © 2021 Association for the Advancement of Artificial Intelligence. All Rights Reserved. This paper was published in Proceedings of Thirty-Fifth AAAI Conference on Artificial Intelligence (AAAI-21) and is made available with permission of Association for the Advancement of Artificial Intelligence. application/pdf |
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Engineering::Computer science and engineering Engineering::Computer science and engineering::Information systems::Information storage and retrieval Linear Modular Dispersion Bandit Interactive Recommender Systems Ding, Qinxu Liu, Yong Miao, Chunyan Cheng, Fei Tang, Haihong A hybrid bandit framework for diversified recommendation |
description |
The interactive recommender systems involve users in the recommendation
procedure by receiving timely user feedback to update the recommendation
policy. Therefore, they are widely used in real application scenarios. Previous
interactive recommendation methods primarily focus on learning users'
personalized preferences on the relevance properties of an item set. However,
the investigation of users' personalized preferences on the diversity
properties of an item set is usually ignored. To overcome this problem, we
propose the Linear Modular Dispersion Bandit (LMDB) framework, which is an
online learning setting for optimizing a combination of modular functions and
dispersion functions. Specifically, LMDB employs modular functions to model the
relevance properties of each item, and dispersion functions to describe the
diversity properties of an item set. Moreover, we also develop a learning
algorithm, called Linear Modular Dispersion Hybrid (LMDH) to solve the LMDB
problem and derive a gap-free bound on its n-step regret. Extensive experiments
on real datasets are performed to demonstrate the effectiveness of the proposed
LMDB framework in balancing the recommendation accuracy and diversity. |
author2 |
School of Computer Science and Engineering |
author_facet |
School of Computer Science and Engineering Ding, Qinxu Liu, Yong Miao, Chunyan Cheng, Fei Tang, Haihong |
format |
Conference or Workshop Item |
author |
Ding, Qinxu Liu, Yong Miao, Chunyan Cheng, Fei Tang, Haihong |
author_sort |
Ding, Qinxu |
title |
A hybrid bandit framework for diversified recommendation |
title_short |
A hybrid bandit framework for diversified recommendation |
title_full |
A hybrid bandit framework for diversified recommendation |
title_fullStr |
A hybrid bandit framework for diversified recommendation |
title_full_unstemmed |
A hybrid bandit framework for diversified recommendation |
title_sort |
hybrid bandit framework for diversified recommendation |
publishDate |
2021 |
url |
https://ojs.aaai.org/index.php/AAAI/issue/archive https://hdl.handle.net/10356/152719 |
_version_ |
1712300648548007936 |